[基于 12 导联可穿戴式心电图设备的室上性心动过速机制智能分类模型]。

H Wang, L Mi, Y Zhang, L Ge, J Lai, T Chen, J Li, X Shi, J Xiu, M Tang, W Yang, J Guo
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引用次数: 0

摘要

目的利用 12 导联可穿戴心电图设备开发一种用于鉴别诊断房室结再入性心动过速(AVNRT)和房室再入性心动过速(AVRT)的智能模型:方法:将可穿戴设备记录的356份12导联室上性心动过速(SVT)心电图样本随机分为训练集和验证集,采用5倍交叉验证建立智能分类模型,并选取2021年10月至2023年3月期间接受电生理检查和射频消融术的101例诊断为SVT的患者作为测试集。比较了诱发心动过速前和诱发心动过速时心电图参数的变化。基于多尺度深度神经网络,构建并验证了 SVT 机制分类智能诊断模型。提取Ⅱ、Ⅲ、Ⅴ1三导联心电图信号建立新的分类模型,并与12导联模型的诊断效果进行比较:结果:在测试集中的 101 例 SVT 患者中,68 例经电生理检查诊断为 AVNRT,33 例经电生理检查诊断为 AVRT。在验证集中,预训练模型在识别 AVNRT 方面达到了较高的精确度-召回曲线下面积(0.9492)和 F1 分数(0.8195)。在测试集中,第Ⅱ、Ⅲ、Ⅴ1、3 导联和 12 导联智能诊断模型的 F1 总分分别为 0.5597、0.6061、0.3419、0.6003 和 0.6136。与 12 导联分类模型相比,导联-Ⅲ模型的净重分类指数提高了-0.029(P=0.878),综合判别指数提高了-0.005(P=0.965):基于多尺度深度神经网络的智能诊断模型利用可穿戴心电图设备对 SVT 机制进行分类的准确性是可以接受的。
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[An intelligent model for classifying supraventricular tachycardia mechanisms based on 12-lead wearable electrocardiogram devices].

Objective: To develop an intelligent model for differential diagnosis of atrioventricular nodal re-entrant tachycardia (AVNRT) and atrioventricular re-entrant tachycardia (AVRT) using 12-lead wearable electrocardiogram devices.

Methods: A total of 356 samples of 12-lead supraventricular tachycardia (SVT) electrocardiograms recorded by wearable devices were randomly divided into training and validation sets using 5-fold cross validation to establish the intelligent classification model, and 101 patients with the diagnosis of SVT undergoing electrophysiological studies and radiofrequency ablation from October, 2021 to March, 2023 were selected as the testing set. The changes in electrocardiogram parameters before and during induced tachycardia were compared. Based on multiscale deep neural network, an intelligent diagnosis model for classifying SVT mechanisms was constructed and validated. The 3-lead electrocardiogram signals from Ⅱ, Ⅲ, and Ⅴ1 were extracted to build new classification models, whose diagnostic efficacy was compared with that of the 12-lead model.

Results: Of the 101 patients with SVT in the testing set, 68 were diagnosed with AVNRT and 33 were diagnosed with AVRT by electrophysiological study. The pre-trained model achieved a high area under the precision-recall curve (0.9492) and F1 score (0.8195) for identifying AVNRT in the validation set. The total F1 scores of the lead Ⅱ, Ⅲ, Ⅴ1, 3-lead and 12-lead intelligent diagnostic models in the testing set were 0.5597, 0.6061, 0.3419, 0.6003 and 0.6136, respectively. Compared with the 12-lead classification model, the lead-Ⅲ model had a net reclassification index improvement of -0.029 (P=0.878) and an integrated discrimination index improvement of -0.005 (P=0.965).

Conclusion: The intelligent diagnostic model based on multiscale deep neural network using wearable electrocardiogram devices has an acceptable accuracy for classifying SVT mechanisms.

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